Subgroup-Specific Risk-Controlled Dose Estimation in Radiotherapy
Cancer remains a leading cause of death, highlighting the importance of effective radiotherapy (RT). Magnetic resonance-guided linear accelerators (MR-Linacs) enable imaging during RT, allowing for inter-fraction, and perhaps even intra-fraction, adjustments of treatment plans. However, achieving th...
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Zusammenfassung: | Cancer remains a leading cause of death, highlighting the importance of
effective radiotherapy (RT). Magnetic resonance-guided linear accelerators
(MR-Linacs) enable imaging during RT, allowing for inter-fraction, and perhaps
even intra-fraction, adjustments of treatment plans. However, achieving this
requires fast and accurate dose calculations. While Monte Carlo simulations
offer accuracy, they are computationally intensive. Deep learning frameworks
show promise, yet lack uncertainty quantification crucial for high-risk
applications like RT. Risk-controlling prediction sets (RCPS) offer
model-agnostic uncertainty quantification with mathematical guarantees.
However, we show that naive application of RCPS may lead to only certain
subgroups such as the image background being risk-controlled. In this work, we
extend RCPS to provide prediction intervals with coverage guarantees for
multiple subgroups with unknown subgroup membership at test time. We evaluate
our algorithm on real clinical planing volumes from five different anatomical
regions and show that our novel subgroup RCPS (SG-RCPS) algorithm leads to
prediction intervals that jointly control the risk for multiple subgroups. In
particular, our method controls the risk of the crucial voxels along the
radiation beam significantly better than conventional RCPS. |
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DOI: | 10.48550/arxiv.2407.08432 |